Fr. 52.50

Entropy Filter for Anomaly Detection with Eddy Current Remote Field

English, German · Paperback / Softback

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Description

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We consider the problem of extracting a specific feature from a noisy signal generated by a multi-channels Remote Field Eddy Current Sensor. The sensor is installed on a mobile robot whose mission is the detection of anomalous regions in met al pipelines. Given the presence of noise that characterizes the data series, a nomaly signals could be masked by noise and therefore difficult to identify in some instances. In order to enhance signal peaks that potentially identify anomalies we consider an entropy filter built on a-posteriori probability density functions associated with data series. Thresholds based on the Neyman-Pearson criterion for hypothes is testing are derived. The algorithmic tool is applied to the analysis of data from a portion of pipeline with a set of anomalies introduced at predetermined locations. Critical areas identifying anomalies capture the set of damaged locations, demonstrating the effectiveness of the filter in detection with Remote Field Eddy Current Sensor.

About the author










Master of Science in Mechanical Engineering | University of Ottawa ¿ Ottawa, ON (Sept. 2011 ¿ May 2014).Bachelor of Science in Mechanical Engineering | American University of Sharjah (Honours Cum Laude) (Sept. 2006 ¿ Dec. 2010)

Product details

Authors Wail Guaieb, Fari Sheikhi, Farid Sheikhi, David Spinello, Davide Spinello
Publisher LAP Lambert Academic Publishing
 
Languages English, German
Product format Paperback / Softback
Released 31.07.2015
 
EAN 9783659705519
ISBN 978-3-659-70551-9
No. of pages 88
Subject Humanities, art, music > Education > Education system

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